Inference for Forecasting Accuracy: Pooled versus Individual Estimators in High-dimensional Panel Data
Abstract
Panels with large time (T) and cross-sectional (N) dimensions are a key data structure in social sciences and other fields. A central question in panel data analysis is whether to pool data across individuals or to estimate separate models. Pooled estimators typically have lower variance but may suffer from bias, creating a fundamental trade-off for optimal estimation. We develop a new inference method to compare the forecasting performance of pooled and individual estimators. Specifically, we propose a confidence interval for the difference between their forecasting errors and establish its asymptotic validity. Our theory allows for complex temporal and cross-sectional dependence in the model errors and covers scenarios where N can be much larger than T-including the independent case under the classical condition N/T2 0. The finite-sample properties of the proposed method are examined in an extensive simulation study.
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